Litcius/Paper detail

Classification of Indian Classical Music With Time-Series Matching Deep Learning Approach

Akhilesh Sharma, Gaurav Aggarwal, Sachit Bhardwaj, Prąsun Chakrabarti, Tulika Chakrabarti, Jemal Abawajy, Siddhartha Bhattacharyya, Richa Mishra, Anirban Das, Hairulnizam Mahdin

2021IEEE Access133 citationsDOIOpen Access PDF

Abstract

Music is a heavenly way of expressing feelings about the world. The language of music has vast diversity. For centuries, people have indulged in debates to stratisfy between Western and Indian Classical Music. But through this paper, an understanding can be fabricated while differentiating the types of Indian Classical Music. Classical music is one of the essential characteristics of Indian Cultural Heritage. Indian Classical Music is divided into two major parts, i.e. Hindustani and Carnatic. Models have been sculptured and trained to classify between Hindustani and Carnatic Music. In this paper, two approaches are used to implement classification models. MFCCs are used as features and implemented models like DNN (1 Layer, 2 Layers, 3 Layers), CNN (1 Layer, 2 Layers, 3 Layers), RNN-LSTM, SVM (Sigmoid, Polynomial & Gaussian Kernel) as one approach. A 3 channels input is created by merging features like MFCC, Spectrogram and Scalogram and implemented models like VGG-16, CNN (1 Layer, 2 Layers, 3 Layers), ResNet-50 as another approach. 3 Layered CNN and RNN-LSTM model performed best among all the approaches.

Topics & Concepts

Computer scienceSpectrogramHidden Markov modelSpeech recognitionClassical musicMel-frequency cepstrumArtificial intelligenceKernel (algebra)Sigmoid functionLayer (electronics)PolynomialPattern recognition (psychology)Feature extractionMathematicsArtificial neural networkOrganic chemistryCombinatoricsArtChemistryMusicalVisual artsMathematical analysisMusic and Audio ProcessingNeuroscience and Music PerceptionMusic Technology and Sound Studies